Semantic modeling of cell damage prediction: a machine learning approach at human-level performance in dermatology

Sci Rep. 2023 May 23;13(1):8336. doi: 10.1038/s41598-023-35370-7.

Abstract

Machine learning is transforming the field of histopathology. Especially in classification related tasks, there have been many successful applications of deep learning already. Yet, in tasks that rely on regression and many niche applications, the domain lacks cohesive procedures that are adapted to the learning processes of neural networks. In this work, we investigate cell damage in whole slide images of the epidermis. A common way for pathologists to annotate a score, characterizing the degree of damage for these samples, is the ratio between healthy and unhealthy nuclei. The annotation procedure of these scores, however, is expensive and prone to be noisy among pathologists. We propose a new measure of damage, that is the total area of damage, relative to the total area of the epidermis. In this work, we present results of regression and segmentation models, predicting both scores on a curated and public dataset. We have acquired the dataset in collaborative efforts with medical professionals. Our study resulted in a comprehensive evaluation of the proposed damage metrics in the epidermis, with recommendations, emphasizing practical relevance for real world applications.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Dermatology*
  • Epidermal Cells
  • Epidermis
  • Humans
  • Machine Learning
  • Semantics